Skip to main content

Documentation Index

Fetch the complete documentation index at: https://handbook.fiddler.ai/llms.txt

Use this file to discover all available pages before exploring further.

Configuration parameters for deploying a model in the Fiddler platform. DeploymentParams defines the deployment configuration for a model, including the artifact type, deployment environment, resource allocation, and container specifications. These parameters control how the model is packaged, deployed, and scaled within the Fiddler infrastructure. This class is used when deploying models to specify the runtime environment, resource requirements, and deployment strategy that best fits your model’s needs and performance requirements.

Examples

Creating basic deployment parameters:
basic_params = DeploymentParams()
Creating deployment with custom resources:
custom_params = DeploymentParams(
    artifact_type=ArtifactType.PYTHON_PACKAGE,
    deployment_type=DeploymentType.BASE_CONTAINER,
    replicas=3,
    cpu=2,
    memory=4096
)
Creating deployment with custom container:
container_params = DeploymentParams(
    artifact_type=ArtifactType.DOCKER_IMAGE,
    deployment_type=DeploymentType.CUSTOM_CONTAINER,
    image_uri="my-registry.com/my-model:v1.0",
    replicas=2,
    cpu=4,
    memory=8192
)

memory : int | None